基于径向基粒子群神经网络的脑机接口脑电信号分类

M. Paulraj, C. Hema, R. Nagarajan, S. Yaacob, A. H. Adorn
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引用次数: 14

摘要

脑机接口利用神经肌肉疾病患者的认知能力来恢复沟通和运动功能。目前,只有EEG及相关方法能够在大多数环境中发挥作用,其时间常数相对较短,并且需要相对简单和廉价的设备。本文提出了一种基于粒子群算法的径向基神经网络心理任务分类算法。提取脑电信号的特征,这些脑电信号记录在5个心理任务中,即基线静止、数学乘法、几何图形旋转、字母组合和视觉计数。从任务信号中提取PCA特征,利用神经网络对两个心理任务的不同组合进行分类。得到的结果显示平均分类率在%到%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG Classification using Radial Basis PSO Neural Network for Brain Machine Interfaces
Brain machine interfaces use the cognitive abilities of patients with neuromuscular disorders to restore communication and motor functions. At present, only EEG and related methods, which have relatively short time constants, can function in most environments, they also require relatively simple and inexpensive equipment. In this paper we propose a mental task classification algorithm using a particle swarm optimization (PSO) for a radial basis neural network. Features are extracted from EEG signals that are recorded during five mental tasks, namely baseline-resting, mathematical multiplication, geometric figure rotation, letter composing and visual counting. PCA features extracted from the task signals are used the neural net to classify different combinations of two mental tasks. Results obtained show average classification rates ranging from % to %.
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